July 10, 2019
Conference Paper

On Computation of Koopman Operator from Sparse Data

Abstract

In this paper, we propose a novel approach to compute the Koopman operator from sparse time series data. In recent years there has a considerable interest in operator theoretic methods for data-driven analysis of dynamical systems and existing techniques for the approximation of the Koopman operator require rich enough data-sets. However, in many applications, the data set may not be rich enough to approximate the operators to acceptable limits. In this paper, using ideas from robust optimization, we propose an algorithm to compute the Koopman operator from sparse data. In particular, we enrich the sparse data set with artificial data points and use robust optimization techniques to obtain the transfer operator. We illustrate the efficiency of our proposed approach in three different dynamical systems, namely, a linear system, a nonlinear system and a dynamical system governed by a partial differential equation.

Revised: February 20, 2020 | Published: July 10, 2019

Citation

Sinha S., U. Vaidya, and E. Yeung. 2019. On Computation of Koopman Operator from Sparse Data. In American Control Conference (ACC 2019), July 10-12, 2019, Philadephia, PA, 5519-5524. Piscataway, New Jersey:IEEE. PNNL-SA-138365. doi:10.23919/ACC.2019.8814861